More buck-per-shot: Why learning trumps mitigation in noisy quantum sensing

Aroosa Ijaz , C. Huerta Alderete , Frédéric Sauvage , Lukasz Cincio , M. Cerezo , Matthew L. Goh
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Abstract

Quantum sensing is one of the most promising applications for quantum technologies. However, reaching the ultimate sensitivities enabled by the laws of quantum mechanics can be a challenging task in realistic scenarios where noise is present. While several strategies have been proposed to deal with the detrimental effects of noise, these come at the cost of an extra shot budget. Given that shots are a precious resource for sensing – as infinite measurements could lead to infinite precision – care must be taken to truly guarantee that any shot not being used for sensing is actually leading to some metrological improvement. In this work, we study whether investing shots in error-mitigation, inference techniques, or combinations thereof, can improve the sensitivity of a noisy quantum sensor on a (shot) budget. We present a detailed bias–variance error analysis for various sensing protocols. Our results show that the costs of zero-noise extrapolation techniques outweigh their benefits. We also find that pre-characterizing a quantum sensor via inference techniques leads to the best performance, under the assumption that the sensor is sufficiently stable.
更多的单次奖励:为什么在嘈杂的量子传感中学习胜过缓解
量子传感是量子技术最有前途的应用之一。然而,在存在噪声的现实情况下,达到量子力学定律所能实现的最终灵敏度可能是一项具有挑战性的任务。虽然已经提出了几种策略来处理噪音的有害影响,但这些都是以额外的镜头预算为代价的。鉴于镜头是一种宝贵的传感资源——因为无限的测量可能导致无限的精度——必须谨慎,以真正保证任何镜头不用于传感实际上导致一些计量改进。在这项工作中,我们研究了在错误缓解、推理技术或它们的组合中投入镜头是否可以在(镜头)预算上提高噪声量子传感器的灵敏度。我们对各种传感协议进行了详细的偏方差误差分析。我们的研究结果表明,零噪声外推技术的成本大于其收益。我们还发现,在假设传感器足够稳定的情况下,通过推理技术对量子传感器进行预表征可以获得最佳性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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